提取合同要素

Ilias Chalkidis, Ion Androutsopoulos, A. Michos
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引用次数: 97

摘要

我们研究了契约元素的提取如何实现自动化。我们提供了一个带有黄金契约元素注释的标记数据集,以及一个可用于预训练词嵌入的未标记契约数据集。这两个数据集都以编码形式提供,以绕过隐私问题。我们描述并实验比较了几种使用手工编写规则和线性分类器(逻辑回归,svm)的契约元素提取方法,这些方法具有手工制作的特征、词嵌入和词性标签嵌入。最好的结果是通过结合机器学习(手工制作的特征和嵌入)和手工编写的后处理规则的混合方法获得的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting contract elements
We study how contract element extraction can be automated. We provide a labeled dataset with gold contract element annotations, along with an unlabeled dataset of contracts that can be used to pre-train word embeddings. Both datasets are provided in an encoded form to bypass privacy issues. We describe and experimentally compare several contract element extraction methods that use manually written rules and linear classifiers (logistic regression, SVMs) with hand-crafted features, word embeddings, and part-of-speech tag embeddings. The best results are obtained by a hybrid method that combines machine learning (with hand-crafted features and embeddings) and manually written post-processing rules.
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